20 research outputs found
Glucose concentration in capillary blood of dairy cows obtained by a minimally invasive lancet technique and determined with three different hand-held devices
Background Dairy cows have a massive demand for glucose at the onset of
lactation. A poor adaption to this period leads to an excessive negative
energy balance with an increased risk for ketosis and impaired animal health
and production. Besides the measurement of ketones, analysing the glucose
concentration in blood is reported as helpful instrument for diagnosis and
differentiation of ketosis. Monitoring metabolic parameters requires multiple
blood sampling. In other species, new blood sampling techniques have been
introduced in which small amounts of blood are rapidly analysed using
electronic hand-held devices. The objective of this study was to evaluate the
suitability of capillary blood for blood glucose measurement in dairy cows
using the hand-held devices FreeStyle Precision (FSP, Abbott), GlucoMen LX
Plus (GLX, A. Menarini) and the WellionVet GLUCO CALEA, (WGC, MED TRUST). In
total, 240 capillary blood samples were obtained from dry and fresh lactating
Holstein-Friesian cows. Blood was collected from the skin of the exterior
vulva by using a lancet. For method comparison, additional blood samples were
taken from a coccygeal vessel and analyzed in a laboratory. Glucose
concentrations measured by a standard laboratory method were defined as the
criterion standard. Results The Pearson correlation coefficients between the
glucose concentrations analyzed in capillary blood with the devices and the
reference were 73 % for the FSP, 81 % for the GLX and 41 % for the WGC. Bland-
Altman plots showed biases of −18.8 mg/dL for the FSP, -11.2 mg/dL for the GLX
and +20.82 mg/dL for the WGC. The optimized threshold determined by a Receiver
Operating Characteristics analysis to detect hyperglycemia using the FSP was
43 mg/dL with a sensitivity (Se) and specificity (Sp) of 76 and 80 %. Using
the GLX and WGC optimized thresholds were 49 mg/dL (Se = 92 %, Sp = 85 %) and
95 mg/dL (Se = 39 %, Sp = 92 %). Conclusions The results of this study
demonstrate good performance characteristics for the GLX and moderate for the
FSP to detect hyperglycemia in dairy cows using capillary blood. With the
study settings, the WGC was not suitable for determination of glucose
concentrations
Genetic and genomic monitoring with minimally invasive sampling methods
Funding: Marie Slodowska Curie Fellowship, (Behaviour-Connect) funded by the EU Horizon2020 program (ELC).The decreasing cost and increasing scope and power of emerging genomic technologies are reshaping the field of molecular ecology. However, many modern genomic approaches (e.g., RAD-seq) require large amounts of high quality template DNA. This poses a problem for an active branch of conservation biology: genetic monitoring using minimally invasive sampling (MIS) methods. Without handling or even observing an animal, MIS methods (e.g. collection of hair, skin, faeces) can provide genetic information on individuals or populations. Such samples typically yield low quality and/or quantities of DNA, restricting the type of molecular methods that can be used. Despite this limitation, genetic monitoring using MIS is an effective tool for estimating population demographic parameters and monitoring genetic diversity in natural populations. Genetic monitoring is likely to become more important in the future as many natural populations are undergoing anthropogenically-driven declines, which are unlikely to abate without intensive adaptive management efforts that often include MIS approaches. Here we profile the expanding suite of genomic methods and platforms compatible with producing genotypes from MIS, considering factors such as development costs and error rates. We evaluate how powerful new approaches will enhance our ability to investigate questions typically answered using genetic monitoring, such as estimating abundance, genetic structure and relatedness. As the field is in a period of unusually rapid transition, we also highlight the importance of legacy datasets and recommend how to address the challenges of moving between traditional and next generation genetic monitoring platforms. Finally, we consider how genetic monitoring could move beyond genotypes in the future. For example, assessing microbiomes or epigenetic markers could provide a greater understanding of the relationship between individuals and their environment.Publisher PDFPeer reviewe